| compare.margins | Compares two marginal effects (MEMs or AMEs). Estimate of uncertainty is from a simulated draw from a normal distribution. |
| count.fit | Fits four different count models and compares them. |
| diagn | Computes diagnostics for generalized linear models. |
| ess | A subset of data from the European Social Survey |
| essUK | A subset of data from the European Social Survey |
| first.diff.fitted | Computes the first difference in fitted values, or a series of first differences. Inference in supported via the delta method or bootstrapping. |
| gss2016 | Data from the 2016 General Social Survey. |
| LF06art | Data to replicate Long and Freese's (2006) count models (pp354-414) |
| LF06travel | Travel time example data for alternative-specific outcomes. |
| list.coef | Transform glm and mixed model objects into model summaries that include coefficients, standard errors, exponentiated coefficients, confidence intervals and percent change. |
| logan | Replication data for Logan's (1983) application of conditional logistic regression to mobility processes. |
| margins.dat | Add model predictions, standard errors and confidence intervals to a design matrix for a model object. |
| margins.dat.clogit | Computes predicted probabilities for conditional and rank-order/exploded logistic regression models. Inference is based upon simulation techniques (requires the MASS package). Alternatively, bootstrapping is an option for conditional logistic regression models. |
| margins.des | Creates a design matrix of idealized data for illustrating model predictions. |
| Mize19AH | Add-Health Data analzed in Mize (2019) |
| Mize19GSS | General Social Survey Data analzed in Mize (2019) |
| rubins.rule | Aggregate Standard Errors using Rubin's Rule. |
| second.diff.fitted | Computes the second difference in fitted values. Inference in supported via the delta method or bootstrapping. |
| wagepan | Data to illustrate mixed effects regression models with serial correlation. |